基于物联网传感器系统的葡萄树环境条件参数与攻击程度比较

M. Hnatiuc, Bogdan Savin, I. Dina
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引用次数: 0

摘要

利用物联网传感器网络进行葡萄病害识别是许多研究者研究的一种新方法。这种方法想要取代农民使用传统方法来检测和预防葡萄藤问题的工作。本研究的目的是比较经典和智能数据采集方法获得的葡萄病害诊断结果。利用经典的方法来鉴定葡萄叶病害的侵袭程度。利用神经网络分类对环境参数进行分析,识别疾病的发生并进行预防。因此,诊断系统可以使用一个监督神经网络来实现,其中类代表在叶子上识别的DA,输入是大气条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison between Environmental Condition Parameters and Attack Degree of Vine using IoT Sensors System
Vine disease identification using the IoT sensors network is a new method studied by many researchers. This method wants to replace the farmer’s work that uses classical methods to detect and prevent vine problems. The presented studies aim to compare the results of vine disease diagnosis obtained using classical and intelligent methods of data acquisition. Using the classical methods is identifying the degree of attack (DA) of the disease on the vine leaf. The environmental parameters are analyzed using neural network classification to identify the disease occurrence and to prevent them. So, the diagnosis system can be implemented using a supervised neural network in which the classes represent the DA identified on the leaves and the inputs are the atmospheric conditions.
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